Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Say I have a training set in a data frame train with columns ColA, ColB, ColC, etc. One of these columns designates a binary class, say column Class, with "yes" or "no" values.

I'm trying out some binary classifiers, e.g.:

mynb <- NaiveBayes(Class ~ ColA + ColB + ColC, train)

I would like to run the above code in a loop, automatically generating all possible combinations of columns in the formula, i.e.:

mynb <- append(mynb, NaiveBayes(Class ~ ColA, train)
mynb <- append(mynb, NaiveBayes(Class ~ ColA + ColB, train)
mynb <- append(mynb, NaiveBayes(Class ~ ColA + ColB + ColC, train)
mynb <- append(mynb, NaiveBayes(Class ~ ColB + ColC + ColD, train)

How can I automatically generate formulas for each possible linear model involving columns of a data frame?

share|improve this question
see @gd047's answer here –  Chase Mar 14 '11 at 15:24
Thanks, @Chase! The link was extremely useful! –  Leo Mar 15 '11 at 9:17

3 Answers 3

up vote 8 down vote accepted

Say we work with this ridiculous example :

DF <- data.frame(Class=1:10,A=1:10,B=1:10,C=1:10)

Then you get the names of the columns

Cols <- names(DF)
Cols <- Cols[! Cols %in% "Class"]
n <- length(Cols)

You construct all possible combinations

id <- unlist(

You paste them to formulas

Formulas <- sapply(id,function(i)

And you loop over them to apply the models.


Be warned though: if you have more than a handful columns, this will quickly become very heavy on the memory and result in literally thousands of models. You have 2^n - 1 different models with n being the number of columns.

Make very sure that is what you want, in general this kind of model comparison is strongly advised against. Forget about any kind of inference as well when you do this.

share|improve this answer

Here is an excellent blog post by Mark Heckman, detailing how to construct all possible regression models, given a set of explanatory variables and a response variable. However, as pointed out by Joris, I would strictly caution against using such an approach since (a) the number of regressions increases exponentially and (b) statistical experts don't recommend data fishing of this kind, as it is fraught with all kinds of risks.

share|improve this answer
indexes<-unique(apply(combinations(length(vars), length(vars), repeats=T), 1, unique))
gen.form<-function(x) as.formula(paste('~',paste( vars[x],collapse='+')))
formulas<-lapply(indexes, gen.form)


R> formulas

[[1]] ~a

[[2]] ~a + b

[[3]] ~a + c

[[4]] ~a + d

[[5]] ~a + b + c

[[6]] ~a + b + d

[[7]] ~a + c + d

[[8]] ~a + b + c + d

[[9]] ~b

[[10]] ~b + c

[[11]] ~b + d

[[12]] ~b + c + d

[[13]] ~c

[[14]] ~c + d

[[15]] ~d

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.